Evaluating the Performance of Delay Tolerant in Network Routing Protocols

Authors

  • Dharmendra Singh Rajput School of Information Technology and Engineering, Vellore Institute of Technology, Vellore, India.
  • Syed Thouheed Ahmed School of Computing and Information Technology, REVA University, Bengaluru, India

Keywords:

DTN, ONE, epidemic, ProPHET, Spray and Wait, TTL, Delay tolerance, Network Routing Protocols

Abstract

Delay-tolerant Network (DTN) is a network designed to operate effectively over extreme distances such as those encountered in space communications or on an interplanetary scale. In such an environment, nodes are connected intermittently, and determinations of the future node connections are not confirmed. In such network environment, the packet can be transferred by searching current efficient route available for a particular node. Due to the uncertainty of packet transfer route, DTN is affected by the variety of factors such as packet size, communication cost, node activity, etc. In the previous study, Effect of misbehaviour nodes in DTN has been analyzed. The primary goal of the study presented in this paper is to extend these works in an attempt to offer a better understanding of the behavior of different routing protocols with different strategies that depend on various amounts of Network parameters. In this paper, we discuss three DTN routing protocols Epidemic, PROPHET, and Spray and Wait. A special simulator will be used; that is Opportunistic Network Environment (ONE) to create a network environment.

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Published

2022-08-14

How to Cite

Dharmendra Singh Rajput, & Syed Thouheed Ahmed. (2022). Evaluating the Performance of Delay Tolerant in Network Routing Protocols. International Journal of Computational Learning & Intelligence, 1(1), 1–8. Retrieved from https://milestoneresearch.in/JOURNALS/index.php/IJCLI/article/view/22

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Section

RESEARCH ARTICLES